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      Graph matching between bipartite and unipartite networks: to collapse, or not to collapse, that is the question

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          Abstract

          Graph matching consists of aligning the vertices of two unlabeled graphs in order to maximize the shared structure across networks; when the graphs are unipartite, this is commonly formulated as minimizing their edge disagreements. In this paper, we address the common setting in which one of the graphs to match is a bipartite network and one is unipartite. Commonly, the bipartite networks are collapsed or projected into a unipartite graph, and graph matching proceeds as in the classical setting. This potentially leads to noisy edge estimates and loss of information. We formulate the graph matching problem between a bipartite and a unipartite graph using an undirected graphical model, and introduce methods to find the alignment with this model without collapsing. In simulations and real data examples, we show how our methods can result in a more accurate matching than the naive approach of transforming the bipartite networks into unipartite, and we demonstrate the performance gains achieved by our method in simulated and real data networks, including a co-authorship-citation network pair and brain structural and functional data.

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          Author and article information

          Journal
          05 February 2020
          Article
          2002.01648
          e9d77346-2566-4991-982b-1705e4623707

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          stat.ML cs.LG stat.ME

          Machine learning,Artificial intelligence,Methodology
          Machine learning, Artificial intelligence, Methodology

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